Releases
0.3.0
wyli
released this
05 Oct 10:55
Added
Overview document for feature highlights in v0.3.0
Automatic mixed precision support
Multi-node, multi-GPU data parallel model training support
3 new evaluation metric functions
11 new network layers and blocks
6 new network architectures
14 new transforms, including an I/O adaptor
Cross validation module for DecathlonDataset
Smart Cache module in dataset
monai.optimizers
module
monai.csrc
module
Experimental feature of ImageReader using ITK, Nibabel, Numpy, Pillow (PIL Fork)
Experimental feature of differentiable image resampling in C++/CUDA
Ensemble evaluator module
GAN trainer module
Initial cross-platform CI environment for C++/CUDA code
Code style enforcement now includes isort and clang-format
Progress bar with tqdm
Changed
Now fully compatible with PyTorch 1.6
Base Docker image upgraded to nvcr.io/nvidia/pytorch:20.08-py3
from nvcr.io/nvidia/pytorch:20.03-py3
Code contributions now require signing off on the Developer Certificate of Origin (DCO)
Major work in type hinting finished
Remote datasets migrated to Open Data on AWS
Optionally depend on PyTorch-Ignite v0.4.2 instead of v0.3.0
Optionally depend on torchvision, ITK
Enhanced CI tests with 8 new testing environments
Removed
Fixed
dense_patch_slices
incorrect indexing
Data type issue in GeneralizedWassersteinDiceLoss
ZipDataset
return value inconsistencies
sliding_window_inference
indexing and device
issues
importing monai modules may cause namespace pollution
Random data splits issue in DecathlonDataset
Issue of randomising a Compose
transform
Various issues in function type hints
Typos in docstring and documentation
PersistentDataset
issue with existing file folder
Filename issue in the output writers
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